Discovering the underlying low dimensional structure of high dimensional data has attracted a significant amount of researches recently and has shown to have a wide range of applications. As an effective dimension reduction tool, singular value decomposition is often used to analyze high dimensional matrices, which are traditionally assumed to have a low rank matrix approximation. In this paper, we propose a new approach. We assume a high dimensional matrix can be approximated by a sum of a small number of Kronecker products of matrices with potentially different configurations, named as a hybird Kronecker outer Product Approximation (hKoPA). It provides an extremely flexible way of dimension reduction compared to the low-rank matrix approximation. Challenges arise in estimating a hKoPA when the configurations of component Kronecker products are different or unknown. We propose an estimation procedure when the set of configurations are given and a joint configuration determination and component estimation procedure when the configurations are unknown. Specifically, a least squares backfitting algorithm is used when the configuration is given. When the configuration is unknown, an iterative greedy algorithm is used. Both simulation and real image examples show that the proposed algorithms have promising performances. The hybrid Kronecker product approximation may have potentially wider applications in low dimensional representation of high dimensional data
翻译:最近,发现高维数据低维结构的深层低维结构吸引了大量研究,并显示其应用范围很广。作为一种有效的减少维度工具,单值分解通常用于分析高维矩阵,传统上假定这些矩阵的配置为低级矩阵近似值。在本文中,我们提出一个新的方法。我们假设高维矩阵可以被少量的具有潜在不同配置配置的Kronecker 矩阵产品(称为Hybird Kronecker 外部产品优化(hKoPA))的总和所近似。它提供了与低级矩阵近似相比,一个非常灵活的减少维度的方法。当组件 Kronecker 产品配置不同或未知时,在估算高维矩阵时,会出现挑战。当配置不为人所知时,我们提出一个估算程序,以及组合确定和构件估计程序时,我们使用一个最不相配的算法。当配置为 Hybird 配置为未知时,则使用反复的贪婪算法。两个模拟和真实图像示例都显示,在高维基产品中,可能具有高维值的模型。